Analyzing the Social WebNewnes, 17 feb 2013 - 290 páginas Analyzing the Social Web provides a framework for the analysis of public data currently available and being generated by social networks and social media, like Facebook, Twitter, and Foursquare. Access and analysis of this public data about people and their connections to one another allows for new applications of traditional social network analysis techniques that let us identify things like who are the most important or influential people in a network, how things will spread through the network, and the nature of peoples' relationships. Analyzing the Social Web introduces you to these techniques, shows you their application to many different types of social media, and discusses how social media can be used as a tool for interacting with the online public.
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Índice
1 | |
9 | |
25 | |
4 Network Visualization | 45 |
5 Tie Strength | 63 |
6 Trust | 75 |
7 Understanding Structure Through User Attributes and Behavior | 91 |
8 Building Networks | 107 |
12 LocationBased Social Interaction | 179 |
13 Social Information Filtering | 191 |
14 Social Media in the Public Sector | 203 |
15 Business Use of Social Media | 213 |
16 Privacy | 223 |
Social Network Strategies for Surviving the Zombie Apocalypse | 237 |
249 | |
255 | |
9 Entity Resolution and Link Prediction | 125 |
10 Propagation in Networks | 151 |
11 CommunityMaintained Resources | 169 |
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